Errors are robustly tamed in cumulative knowledge processes.

Proc Natl Acad Sci U S A

Computer Science, School of Engineering and Applied Sciences, Harvard University, Boston, MA 02134.

Published: February 2025

As knowledge accumulates in science and society in a distributed fashion, erroneous derivations can be introduced into the corpus of knowledge. Such derivations can compromise the validity of any units of knowledge that rely on them in the future. Can societal knowledge maintain some level of integrity given simple distributed error-checking mechanisms? In this paper, we investigate the following formulation of the question: assuming that a constant fraction of the new derivations is wrong, is it possible for simple error-checking mechanisms that apply when a new unit of knowledge is derived to maintain the integrity of the corpus of knowledge? This question was introduced by Ben-Eliezer et al. ["Is this correct? Let's check!" (ITCS, 2023)], who gave a robust affirmative answer in a specific probabilistic model for knowledge accumulation. Namely, this model required that new units depend on just one existing unit and join the process according to a preferential attachment rule. In this work, we consider much more general families of processes of knowledge accumulation, where new units may depend on multiple existing units and join according to varied attachment mechanisms. We also consider models with a (random) fraction of insertions of adversarial nodes. We give a robust affirmative answer to the above question by showing that for all of these models, as long as many of the units follow simple local heuristics for checking a bounded number of units they depend on, all errors will be eventually eliminated.

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Source
http://dx.doi.org/10.1073/pnas.2416866122DOI Listing

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